基于非局部微积分的宏观交通模型:开发、分析和验证

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2023-11-28 DOI:10.1109/OJITS.2023.3335303
Pushkin Kachroo;Shaurya Agarwal;Animesh Biswas;Archie J. Huang
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引用次数: 0

摘要

基于非局部微积分的宏观交通模型克服了经典局部模型在准确捕捉交通流动态方面的局限性。这些模型将速度视为下游交通密度的加权平均值,从而融入了 "非本地 "元素,使其更贴近现实驾驶行为。这项研究的主要贡献是多方面的。首先,我们选择了一个非局部 LWR 模型和格林希尔基本图,并证明了该交通流模型满足假设条件。此外,我们还证明了所选模型能保持有界状态,为开发数值稳定方案奠定了基础。随后,我们利用 NGSIM 数据集中的真实交通数据进行了广泛的实地验证,评估了所提出的非局部模型的功效,并开发了一个稳定的数值方案。这些验证结果表明,与本地模型相比,非本地模型在捕捉交通特征方面更具优势,而且在再现复杂交通行为方面的准确性也更高。因此,这项研究既拓展了该领域的理论构架,又证实了其实际应用性。
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Nonlocal Calculus-Based Macroscopic Traffic Model: Development, Analysis, and Validation
Nonlocal calculus-based macroscopic traffic models overcome the limitations of classical local models in accurately capturing traffic flow dynamics. These models incorporate “nonlocal” elements by considering the speed as a weighted mean of downstream traffic density, aligning it more closely with realistic driving behaviors. The primary contributions of this research are manifold. Firstly, we choose a nonlocal LWR model and Greenshields fundamental diagram and prove that this traffic flow model satisfies the well-posed conditions. Furthermore, we prove that the chosen model maintains bounded states, laying the groundwork for developing numerically stable schemes. Subsequently, the efficacy of the proposed nonlocal model is evaluated through extensive field validation using real traffic data from the NGSIM dataset and developing a stable numerical scheme. These validation results highlight the superiority of the nonlocal model in capturing traffic characteristics compared to its local counterpart and establish its enhanced accuracy in reproducing complex traffic behavior. Therefore, this research expands both the theoretical constructs within the field and substantiates its practical applicability.
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